[0001] The present invention is in the field of wireless communication and particularly,
though not exclusively, the field of multiple input, multiple output (MIMO) communications.
[0002] In multiple-input multiple output (MIMO) systems employing precoding, channel knowledge
is used at the transmitter in order to enhance link quality.
[0003] A conventional MIMO system, with
nT transmit and
nR ≤
nT receive antennas, can be modelled mathematically in the complex baseband notation
as:

where
H is the
nR ×
nT channel matrix,
x the
nT × 1 transmit vector of complex symbols with transmit power constraint ∥
x∥
2 = 1,
y the
nR × 1 receive vector, and
n is an
nR × 1 zero-mean white Gaussian distributed noise vector with variance

[0004] Precoding can be also employed in OFDM systems. In such a system, it can be applied,
for example, for each subcarrier separately or for a group of subcarriers.
[0005] Precoding can be achieved in several ways. For example, the Moore-Penrose pseudoinverse
P =
H+ can be applied at the transmitter side, which, in one network configuration, can
be at a base station. If
nT =
nR,
P becomes simply
P =
H-1. This precoding step is necessary for instance in multi-user MIMO systems, wherein
each element of
y will be assigned to an independent user terminal (UT), and therefore no cooperation
will be possible between the UTs. In such a case, the precoding matrix
P will suppress the inter-user interference; nevertheless the above technique may also
be employed in a single-user MIMO system or a multi-user multi-antenna MIMO system,
where one or more UTs have more than one receive antenna.
[0006] However, a drawback of precoding by means of the pseudoinverse channel matrix is
that it can lead to an increase in transmitted power. This is addressed in "
A vector-perturbation technique for near-capacity multiantenna multiuser communication---part
II: perturbation," (B. M. Hochwald, C. B. Peel, and A. L. Swindlehurst, IEEE Trans.
on Commun., vol. 53, no. 3, pp. 537-544, March 2005) hereinafter referred to as "Hochwald et al.". Variations in transmitted power are
undesirable, particularly as they may violate performance constraints for a device.
They may also lead to increased power consumption, which is an important factor in
the design of a handheld or otherwise portable communications device.
[0007] To illustrate problems faced and identified in the prior art, an example will now
be given. In this example,
u denotes the symbols, prior to precoding, to be transmitted. The vector is precoded
by means of a precoding matrix
P, which is chosen to be the Moore-Penrose pseudoinverse
P =
H+, as

[0009] Prior to transmission, the precoded signal s has to be scaled in order to fulfil
the power restriction ∥
x∥
2 =1, such that

where γ = ∥
s∥
2 = ∥
Pu∥
2 as set out in "
A vector-perturbation technique for near-capacity multiantenna multiuser communication
- part I: channel inversion and regularization," (C. B. Peel, B. M. Hochwald, and
A. L. Swindlehurst, IEEE Trans. on Commun., vol. 53, no. 1, pp. 195-202, Jan. 2005), hereinafter referred to as "Peel et al.". This approach assumes perfect knowledge
of γ at the receiver side.
[0010] The normalisation factor is often very large because of the large singular values
of the precoding matrix
P, i.e., of the pseudoinverse of the channel matrix
H (such as noted in papers by Hochwald et al. and by Peel et al., cited above). This
can cause noise amplification at the receiver side since the receive symbol vector

is impaired by a scaled Gaussian noise vector

[0011] Hochwald et al. suggests that one way of overcoming this noise amplification is to
ensure that the transmitted data
u does not lie along the singular values of
H-1 (or
H+, as the case may be). The idea is to allow
u to be perturbed by a complex vector. The perturbed data vector is then:

where τ is a positive real number and
I is a complex integer vector. The scalar τ is selected to be sufficiently large that
the receiver may apply element-wise a modulo function to
y 
to obtain
û, where └ ┘ rounds towards the nearest integer closest to zero. It will be noted that
fτ (
yi) is applied to real and imaginary parts separately. It should be recognised by the
reader that
û is not quantised and therefore contains additive noise.
[0012] Hochwald et al. also suggests that the constellation shift parameter τ should be

where |
c|
max is the absolute value of the real or imaginary part of the constellation symbol with
greatest magnitude, and Δ is the smallest distance between two constellation symbols.
It will be understood that the foregoing is set out for M-QAM constellations; non-square
constellations such as PSK (Phase shift keying) or other, such as hexagonal constellations,
may have a constellation shift parameter τ that is essentially the distance between
the centres of repeated equidistantly shifted constellations.
[0013] Figure 1 illustrates the modulo operation at the receiver side for a 16-QAM constellation.
The received symbol, marked with an 'x', is shifted from the extended constellation
(unfilled points) back to the original constellation (filled points), in which the
symbol detection stage will be done. As will be appreciated by the reader, the average
number of neighbouring points will be increased, as points of the original constellation
which were previously considered to be at the edge of the constellation now have a
complete set of neighbours. This has an impact on the error protection of the outer
symbols. The shift parameter τ, as the distance between the centres of the respective
constellations, can lower this impact if it is chosen to be greater than defined in
Equation 6.
[0014] In accordance with the above, τ and
I can be selected in order to minimise γ = ∥
s∥
2, such that:

[0015] This is an integer least squares problem in the dimension of u, for the solution
of which there exist a large number of algorithms. For instance, the reader is directed
to "
Closest point search in lattices" (E. Agrell, T. Eriksson, A. Vardy, and K. Zeger,
IEEE Transactions on Information Theory, vol. 48, no. 8, pp. 2201-2214, Aug. 2002) and to the references noted in Hochwald et al., especially the Fincke-Pohst algorithm,
which is used for space-time demodulation in "
Lattice code decoder for space-time codes," (M. O. Damen, A. Chkeif, and J.-C. Belfiore,
IEEE Commun. Letters, vol. 4, pp. 161-163, May 2000), where it is called a sphere decoder. Because this algorithm can be used for encoding
the data vector
u, it is called a
"sphere encoder"
.
[0016] If G is defined as the set:

that is, the set of complex-valued integers, then an approximation of
I can be calculated, and the perturbation vector is then given as

where the quantisation function
QτG K {·} rounds the
K-dimensional vector towards the
nearest complex-valued point of the K-dimensional integer lattice, scaled with τ
(depicted by τG
K), where
K is the number of spatial streams, i.e., the dimension of the vector
u.
[0017] A practical implementation as an integer rounding function, indicated by G, can be

[0018] Due to the denominator τ, the complex-integer-rounding function operates in a scaled
integer lattice.
[0020] A number of lattice reduction algorithms exist. Any one of them can be used to calculate
a transformation matrix,
T, such that a reduced basis,
P, is given by
PT. The matrix
T contains only complex integer entries and its determinant is |det(
T)| = 1 and thus is called a unimodular matrix.
[0022] The normalisation factor γ is then determined, by means of a closest point approximation,
as:

[0023] The complete transmission employing non-linear precoding can thus be formulated as

with
y being the receive signal of a single user or a plurality of users, each receiving
one or more elements
yi of the vector
y.
[0024] A block diagram of a transmission train employing data perturbation is shown in Figure
2. As illustrated in Figure 2, vector perturbation is carried out on the transmitted
data u in a vector perturbation unit 20. The perturbed data is passed to be multiplied
by the pseudo inverse
H+ in block 22, which is equivalent to equation 2 set out above. The next block 24 represents
division by

which is a normalisation step. The resultant vector
x is re-multiplied by the channel matrix
H (in block 26) as informed by channel information, to which is added a noise vector
n. In block 28, the resultant vector
y is re-multiplied by the square root of the normalisation factor γ and then modulo
τ is applied to arrive at the perturbed data vector
û.
[0025] Finding the perturbation vector I can be done in several ways. For instance, the
solution of

is an integer least squares problem for which there exist a large number of solution
methods, such as that disclosed in Agrell et al. and also as disclosed in references
contained in
Hochwald et al. Moreover, "On the expected complexity of integer least-squares problems,"
(B. Hassibi and H. Vikalo, Proc. IEEE International Conference on Acoustics, Speech,
and Signal Processing, 2002 (ICASSP '02), vol. 2, pp. 1497-1500) describes complexity in the context of sphere decoding.
[0026] Further, approximation by means of lattice reduction is introduced in Windpassinger
et al.
[0027] As Figure 5 shows, there is a bit error rate performance gap of approximately 2dB
between the "optimal" solution of the least squares problem, denoted as "sphere encoding",
and the approximation of
l by means of lattice reduction, denoted as "LRA closest point algorithm". The reader
will appreciate that Figure 5 illustrates experimental results also for a specific
embodiment of the invention, as will be described in due course.
[0028] Aspects of the invention employ lattice reduction but are intended to provide performance
closer to an optimal solution.
[0029] Aspects of the invention provide a method which has the capability of improving on
the performance of the vector perturbation non-linear precoding technique previously
described in UK patent application
GB2429884. This may involve generating a candidate list for vector perturbation precoding.
[0030] This may further involve providing a low complexity candidate list for peak-to-average
power (PAPR) optimisation.
[0031] Aspects of the invention may provide a method of improving the approximation of a
closest integer lattice point (and, in particular, closest point approximation).
[0032] Aspects of the invention may provide a method of improving the approximation of an
integer least-squares problem.
[0033] An aspect of the invention provides a method of precoding information to be emitted
on a multi-antenna emission, the method comprising applying a perturbation to said
information before transmission, said perturbation being expressible as a perturbation
vector, wherein said perturbation vector is selected by defining a lattice representing
possible identities of information to be sent, defining a reduced lattice from said
lattice, selecting a first candidate perturbation vector from said reduced lattice,
selecting further candidate perturbation vectors, transforming said candidate perturbation
vectors from expression in said reduced lattice into expression in said defined lattice
and selecting one of said transformed candidate identities as perturbation to be applied,
on the basis of a measure of power uniformity per antenna.
[0034] An aspect of the invention provides a precoder for multi-antenna wireless communications
apparatus, the precoder comprising means for applying a perturbation to information
before transmission, and offset determining means, the perturbation determining means
being operable to determine a perturbation capable of being expressed as a vector
in information lattice space, the perturbation determining means being operable to
define a reduced lattice from said information lattice space, to select a first candidate
perturbation vector from said reduced lattice, and to select further candidate perturbation
vectors, then to transform said candidate perturbation vectors from expression in
said reduced lattice into expression in said information lattice space and to select
one of said transformed candidate identities as a perturbation to be applied, on the
basis of a measure of power uniformity per antenna.
[0035] An aspect of the invention provides a computer program product comprising computer
executable instructions which, when executed by a computer, cause the computer to
perform a method as set out above. The computer program product may be embodied in
a carrier medium, which may be a storage medium or a signal medium. A storage medium
may include optical storage means, or magnetic storage means, or electronic storage
means.
[0036] An aspect of the invention concerns precoding information prior to MIMO transmission
is described, comprising determining a suitable precoding perturbation. The perturbation
is determined by assembling a list of candidate perturbations in reduced lattice space,
transforming these back into information lattice space and determining which candidate
precoder perturbation is most suitable given a performance criterion.
[0037] The above aspects of the invention can be incorporated into a specific hardware device,
a general purpose device configure by suitable software, or a combination of both.
The invention can be embodied in a software product, either as a complete software
implementation of the invention, or as an add-on component for modification or enhancement
of existing software (such as, as a plug in). Such a software product could be embodied
in a carrier medium, such as a storage medium (e.g. an optical disk or a mass storage
memory such as a FLASH memory) or a signal medium (such as a download). Specific hardware
devices suitable for the embodiment of the invention could include an application
specific device such as an ASIC, an FPGA or a DSP, or other dedicated functional hardware
means. The reader will understand that none of the foregoing discussion of embodiment
of the invention in software or hardware limits future implementation of the invention
on yet to be discovered or defined means of execution.
[0038] Further aspects, features and advantages of the invention will become apparent from
the following description of specific embodiments thereof, with reference to the accompanying
drawings, in which:
Figure 1 illustrates a 16QAM constellation having a modulo operation applied thereto;
Figure 2 illustrates a block diagram of a transmission train employing data perturbation;
Figure 3 illustrates an exemplary wireless communications device incorporating a specific
embodiment of the invention;
Figure 4 illustrates a communications unit of the device illustrated in Figure 3;
Figure 5 illustrates a graph of performance of the communications unit of the specific
embodiment in comparison with other prior art arrangements;
Figure 6 illustrates further performance results of the specific embodiments of the
invention as compared to said prior art examples; and
Figure 7 illustrates a flow diagram of a precoding method in accordance with the specific
embodiment of the invention.
[0039] The present invention will now be described with reference to an implementation of
a wireless communication device. Figure 3 illustrates such a device 100.
[0040] The wireless communication device 100 illustrated in Figure 3 is generally capable
of being used in a MIMO context, to establish a MIMO communications channel with one
or more other devices and, in accordance with a specific embodiment of the invention,
to take account of channel information so as to derive a pre-coding scheme appropriate
to the quality of the channel. The reader will appreciate that the actual implementation
of the wireless communication device is non-specific, in that it could be a base station
or a user terminal.
[0041] Figure 3 illustrates schematically hardware operably configured (by means of software
or application specific hardware components) as a wireless communication device 100.
The receiver device 100 comprises a processor 120 operable to execute machine code
instructions stored in a working memory 124 and/or retrievable from a mass storage
device 122. By means of a general purpose bus 130, user operable input devices 136
are capable of communication with the processor 120. The user operable input devices
136 comprise, in this example, a keyboard and a mouse though it will be appreciated
that any other input devices could also or alternatively be provided, such as another
type of pointing device, a writing tablet, speech recognition means, or any other
means by which a user input action can be interpreted and converted into data signals.
[0042] Audio/video output hardware devices 138 are further connected to the general purpose
bus 130, for the output of information to a user. Audio/video output hardware devices
138 can include a visual display unit, a speaker or any other device capable of presenting
information to a user.
[0043] Communications hardware devices 132, connected to the general purpose bus 130, are
connected to antennas 134. In the illustrated embodiment in Figure 3, the working
memory 124 stores user applications 126 which, when executed by the processor 120,
cause the establishment of a user interface to enable communication of data to and
from a user. The applications in this embodiment establish general purpose or specific
computer implemented utilities that might habitually be used by a user.
[0044] Communications facilities 128 in accordance with the specific embodiment are also
stored in the working memory 124, for establishing a communications protocol to enable
data generated in the execution of one of the applications 126 to be processed and
then passed to the communications hardware devices 132 for transmission and communication
with another communications device. It will be understood that the software defining
the applications 126 and the communications facilities 128 may be partly stored in
the working memory 124 and the mass storage device 122, for convenience. A memory
manager could optionally be provided to enable this to be managed effectively, to
take account of the possible different speeds of access to data stored in the working
memory 124 and the mass storage device 122.
[0045] On execution by the processor 120 of processor executable instructions corresponding
with the communications facilities 128, the processor 120 is operable to establish
communication with another device in accordance with a recognised communications protocol.
[0046] The specific embodiment performs a method to improve the approximation of the perturbation
vector generated by use of lattice-reduction-aided closest point approximation, in
order to improve the performance of the system by finding a perturbation vector that
results in a smaller normalisation factor γ. This is described with reference to the
flow diagram illustrated in figure 7.
[0047] Equation 8 is the closest point approximation by means of lattice reduction, which
is usually computed by the LLL algorithm. The closest point approximation itself is
for example explained in Windpassinger et al. It will be recognised from Figure 5
that the closest point approximation in Equation 8 still causes a performance gap
compared with the optimal solution derived by means of an exhaustive search algorithm
("sphere encoding").
[0048] For this reason, the method employed by the specific embodiment of the invention
finds and provides a candidate list
L of possible perturbation vectors that are considered in order to minimise:

[0049] The first step (step S1-2) of the method of generating the candidate list takes place
in the reduced lattice, where:

is the closest point approximation in the reduced lattice coordinates. This acts as
the starting vector and first entry of the candidate list C. Other candidate vectors
are then obtained by modifying one or more elements of the vector
ĉ and adding these as new candidate vectors to the list (step S1-4).
C(j) is defined as thej-th candidate vector, and hence
C(1) =
ĉ.
[0051] The effect of perturbing elements of
ĉ is to generate other points in the reduced lattice. The perturbations by
a give the closest points in the lattice, since |
α| is the distance between any two neighbouring points.
[0052] An implementation may alternatively choose to increase the list of candidates though
perturbing elements of
ĉ by multiples of α (i.e. not just to the closest point, but also to the closest few
points), and/or by perturbing multiple elements of
ĉ simultaneously rather than just one element at a time.
[0053] Also a perturbation by α ∈ {1,
-1,
i, -
i,1 +
i,1-
i, -1 +
i,-1-
i} can be considered, i.e. a complex perturbation.
[0054] It will be recognised that the technique disclosed in UK patent application
GB2441376A can be used to generate a candidate list and maybe others without loss of generality.
[0055] Once a list
C of candidate vectors in the reduced lattice has been obtained, each candidate can
be converted to a perturbation vector (step S1-6). If the list of perturbation vector
estimates is defined as
L(j), then:

where T is the lattice reduction transformation matrix obtained by, for example, the
LLL algorithm.
[0056] The final step (S1-8) is to find the particular element
L(j) ∈
L that minimises γ, which is:

[0057] The reader will see that this is the same as equation (12). The method described
above looks to improve the closest point approximation of equation 8 by applying a
candidate list
L instead of
Iapprox and replacing equation 8 with equation 12.
[0058] That means that if the closest-point-approximation was not the closest point, this
candidate list could contain the closest point (or at least, a closer point) which
would then be used as the perturbation vector.
[0059] Instead of a sphere encoder algorithm to solve the integer least-squares problem
in equation 7, an improvement is made to the closest-point-approximation which achieves
a very good performance when compared with the sphere encoding.
[0060] This technology improves the performance of non-linear precoding when lattice-reduction-aided
vector perturbation is employed. The performance achieves a performance close to the
optimum sphere encoding vector perturbation.
[0061] Furthermore the disclosed specific embodiment can be used to improve any integer
least squares problem implementation, where the closest point is not necessarily required
(to find the actual closest point on a guaranteed basis needs a sphere encoder), but
rather an approximation will suffice (such as in precoding).
[0062] It may be beneficial to apply such an already computed candidate list to any kind
of Peak-to-Average-Power-Ratio (PAPR) optimisations in OFDM systems. This application
of the present invention can be described as follows.
[0063] An overview of the PAPR problem/optimisation in MIMO-OFDM systems can be found for
instance in:
"Peak-to-average Power Ratio in High-Order OFDM," (N. Dinur, and D. Wulich, IEEE Trans.
on Commun., vol. 49, no. 6, pp. 1063-1072, June 2001); and
"An overview of peak-to-average power ratio reduction techniques for OFDM systems,"
(L. Wang, and C. Tellambura, in Proc. IEEE International Symposium on Signal Processing
and Information Technology, pp. 840-845, Aug. 2006, Vancouver).
[0064] The specific embodiment as described herein uses an approach as described in "
The p-sphere encoder: peak-power reduction by lattice precoding for the MIMO Gaussian
broadcast channel," (F. Boccardi, and G. Caire, IEEE Trans. on Commun., vol. 54, no.
11, Nov. 2006). However, Boccardi et al. uses a sphere encoder to find the initial candidate minimising
γ, i.e., the Euclidean norm ∥
s∥
2. The PAPR reduction needs to be done according to a different norm,
[0065] Boccardi et al. uses a modified sphere encoder to search within a sphere having the
initial candidate (representing the optimal γ) as centre, and with a well-defined
radius. The sphere encoder searches within this radius and finds perturbation vectors
leading to a minimisation of

The larger the well-defined radius, the better the PAPR reduction; but the worse
may be the perturbation vector found according to the Euclidean norm, thereby leading
to a worse γ.
[0066] Instead, the approach according to the present embodiment of the invention is to
choose the centre as to be the best candidate found by the above described candidate
list technique. This is likely to be very close to the optimum solution of the sphere
encoder. A search is then carried out within the already generated list of candidates,
L, in order to find a candidate being close to the initial candidate and minimising
the PAPR.
[0067] It may be beneficial to increase the number of candidates in the list
L.
[0069] The main advantage of the present approach in this case is that the list of candidates
is found by use of lattice reduction and subsequent list generation, which is less
complex than sphere encoding.
[0070] Experimental results, i.e., performance measurements in the sense of uncoded bit
error rates, are shown in Figure 5.
[0071] The simulations are carried out for a {2,2}x4 multi-user MIMO downlink scenario,
i.e., there are two users with two receive antennas each, and the transmitter has
four transmit antennas. Precoding is applied with the channel inverse, i.e.,
P =
H-1, and three different techniques were used to find the non-linear perturbation vector
I:
[0072] The first, labelled "Sphere encoder", is the optimal algorithm to minimise γ, the
second, labelled "LRA closest point approximation", employs the lattice-reduction-aided
closest point approximation as described in Windpassinger et al., and the third, labelled
as "LRA perturbation list clos. point approx.", uses the method of the specific embodiment
to provide a candidate list of possible approximations of the closest lattice point.
The candidate list itself has been described above.
[0073] It will be appreciated that, in any one of the modulation schemes QPSK, 16-QAM and
64-QAM, there is a performance gap of more than 2 dB between the optimum sphere encoder
and the LRA closest point approximation. There is also a gap of approx. 2 dB between
the sphere encoding and LRA closest point approximation of Windpassinger
et al.
[0074] The method set out above evidently closes this gap and achieves a gain of about 1.5
dB. This shows that the perturbation list may provide a better approximation of the
closest lattice point than the original method as described in Windpassinger
et al.
[0075] In Figure 6, the mean value of

can be seen.

is the multiplier of the precoded signal. Therefore, since

is desired to be as small as possible,

should be as large as possible. Clearly, the normalisation factor achieved by the
described embodiment provides improved results when compared with simulations involving
the arrangement disclosed in Windpassinger
et al.
[0076] It will be seen by the skilled reader that the method described in herein has, with
the evidence of the experimental results, an advantageous effect on the normalisation
factor.
[0077] While the foregoing specific description of an embodiment of the invention has been
provided for the benefit of the skilled reader, it will be understood that it should
not be read as mandating any restriction on the scope of the invention. The invention
should be considered as characterised by the claims appended hereto, as interpreted
with reference to, but not bound by, the supporting description.
1. A method of processing information prior to emission thereof on a multi-antenna emission,
comprising precoding said information and scaling said precoded information prior
to emission thereof, the precoding comprising applying a perturbation to said information
before transmission, said perturbation being expressible as a perturbation vector,
wherein said perturbation vector is selected by defining a lattice representing possible
identities of information to be sent, defining a reduced lattice from said lattice,
selecting a first candidate perturbation vector from said reduced lattice, selecting
further candidate perturbation vectors, transforming said candidate perturbation vectors
from expression in said reduced lattice into expression in said defmed lattice, selecting
one of said transformed candidate identities as perturbation to be applied, and said
scaling comprising scaling said information after perturbation on the basis of a transmitted
power constraint, wherein said selecting of one of said transformed candidate identities
is performed on the basis of a scaling factor employed in said scaling.
2. A method in accordance with claim 1 wherein said selecting of said first candidate
perturbation comprises applying a closest point approximation to the information to
be transmitted, in the reduced lattice.
3. A method in accordance with claim 1 or claim 2 wherein said selecting of further perturbation
vectors comprises applying one or more perturbations to at least one element of said
first candidate vector.
4. A method in accordance with claim 3 wherein said one or more perturbations has magnitude
of one inter-lattice point distance in said reduced lattice.
5. A method in accordance with any one of the preceding claims wherein said identifying
comprises determining the transformed candidate identity which, when applied as a
precoding offset to information to be transmitted, causes said precoded information
to require the least scaling of said information prior to transmission.
6. A signal processing apparatus for processing information for a multi-antenna wireless
communications apparatus, the signal processing apparatus comprising a precoder for
precoding information to be emitted and scaling means for scaling said precoded information,
the precoder comprising means for applying a perturbation to information before transmission,
and offset determining means, the perturbation determining means being operable to
determine a perturbation capable of being expressed as a vector in information lattice
space, the perturbation determining means being operable to define a reduced lattice
from said information lattice space, to select a first candidate perturbation vector
from said reduced lattice, and to select further candidate perturbation vectors, then
to transform said candidate perturbation vectors from expression in said reduced lattice
into expression in said information lattice space, and to select one of said transformed
candidate identities as perturbation to be applied, and the scaling means being operable
to scale said information after precoding on the basis of a transmitted power constraint,
wherein said perturbation determining means is operable to select one of said transformed
candidate identities on the basis of a scaling factor employed by said scaling means.
7. Apparatus in accordance with claim 6 wherein said perturbation determining means is
operable to select said first candidate perturbation by applying a closest point approximation
to the information to be transmitted, in the reduced lattice.
8. Apparatus in accordance with claim 6 or claim 7 wherein said perturbation determining
means is operable to select said further perturbation vectors by applying one or more
perturbations to at least one element of said first candidate vector.
9. Apparatus in accordance with claim 8 wherein said one or more perturbations has magnitude
of one inter-lattice point distance in said reduced lattice.
10. Apparatus in accordance with claim 9 wherein said perturbation determining means is
operable to determine the transformed candidate identity which, when applied as a
precoding offset to information to be transmitted, causes said precoded information
to require the least scaling of said information prior to transmission.
11. A wireless communications apparatus comprising a plurality of antennas and a signal
processing apparatus in accordance with any one of claims 6 to 10.
12. A computer program product comprising computer executable instructions which, when
executed by a computer, cause said computer to perform the method of any one of claims
1 to 5.
13. A computer program product comprising computer executable instructions which, when
executed by a computer, cause said computer to become configured as a precoder in
accordance with any one of claims 6 to 11.
14. A computer program product in accordance with claim 12 or claim 13 as embodied on
a computer readable carrier medium.
15. A computer program product in accordance with claim 14 wherein said carrier medium
is a computer readable storage medium.
16. A computer program product in accordance with claim 14 wherein said carrier medium
is a computer readable signal.